Commit d48574cb authored by Chen Chen's avatar Chen Chen Committed by A. Unique TensorFlower
Browse files

Use backticks to denote code spans in nlp modeling docstrings

PiperOrigin-RevId: 362610475
parent 454f8be7
......@@ -40,14 +40,14 @@ class PackedSequenceEmbedding(tf.keras.Model):
max_seq_length: The maximum sequence length for this encoder.
initializer: The initializer for the embedding portion of this encoder.
dropout_rate: The dropout rate to apply before the encoding layers.
pack_multiple_sequences: If True, we can feed multiple sequences into one
pack_multiple_sequences: If `True`, we can feed multiple sequences into one
sequence for training and inference (they don't impact each other).
use_position_id: Whether to expect `position_ids` as an input to the
network. If False, the `position_ids` will be inferred: (1) when
pack_multiple_sequences is False, we assume the position ids are 0, 1,
2, ..., seq_length - 1; (2) when pack_multiple_sequences is True, there
may be multiple sub sequences, and for each sub sequence, its position
ids start from 0, 1, 2, ...
pack_multiple_sequences is False, we assume the position ids are `0, 1,
2, ..., seq_length - 1`; (2) when `pack_multiple_sequences` is `True`,
there may be multiple sub sequences, and for each sub sequence, its
position ids start from 0, 1, 2, ...
"""
def __init__(self,
......
......@@ -37,8 +37,8 @@ class SpanLabeling(tf.keras.Model):
activation: The activation, if any, for the dense layer in this network.
initializer: The initializer for the dense layer in this network. Defaults
to a Glorot uniform initializer.
output: The output style for this network. Can be either 'logits' or
'predictions'.
output: The output style for this network. Can be either `logits` or
`predictions`.
"""
def __init__(self,
......@@ -228,20 +228,20 @@ class XLNetSpanLabeling(tf.keras.layers.Layer):
Args:
sequence_data: The input sequence data of shape
(batch_size, seq_length, input_width).
class_index: The class indices of the inputs of shape (batch_size,).
`(batch_size, seq_length, input_width)`.
class_index: The class indices of the inputs of shape `(batch_size,)`.
paragraph_mask: Invalid position mask such as query and special symbols
(e.g. PAD, SEP, CLS) of shape (batch_size,).
(e.g. PAD, SEP, CLS) of shape `(batch_size,)`.
start_positions: The start positions of each example of shape
(batch_size,).
`(batch_size,)`.
training: Whether or not this is the training phase.
Returns:
A dictionary with the keys 'start_predictions', 'end_predictions',
'start_logits', 'end_logits'.
A dictionary with the keys `start_predictions`, `end_predictions`,
`start_logits`, `end_logits`.
If inference, then 'start_top_predictions', 'start_top_index',
'end_top_predictions', 'end_top_index' are also included.
If inference, then `start_top_predictions`, `start_top_index`,
`end_top_predictions`, `end_top_index` are also included.
"""
paragraph_mask = tf.cast(paragraph_mask, dtype=sequence_data.dtype)
......
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